Park Heung-Woo, Song Woo-Jung, Kim Sae-Hoon, Park Hye-Kyung, Kim Sang-Heon, Kwon Yong Eun, Kwon Hyouk-Soo, Kim Tae-Bum, Chang Yoon-Seok, Cho You-Sook, Lee Byung-Jae, Jee Young-Koo, Jang An-Soo, Nahm Dong-Ho, Park Jung-Won, Yoon Ho Joo, Cho Young-Joo, Choi Byoung Whui, Moon Hee-Bom, Cho Sang-Heon
Department of Internal Medicine, Seoul National University College of Medicine, Seoul, Korea; Institute of Allergy and Clinical Immunology, Seoul National University Medical Research Center, Seoul, Korea.
Department of Internal Medicine, Seoul National University Bundang Hospital, Bundang, Korea.
Ann Allergy Asthma Immunol. 2015 Jan;114(1):18-22. doi: 10.1016/j.anai.2014.09.020. Epub 2014 Oct 24.
No attempt has yet been made to classify asthma phenotypes in the elderly population. It is essential to clearly identify clinical phenotypes to achieve optimal treatment of elderly patients with asthma.
To classify elderly patients with asthma by cluster analysis and developed a way to use the resulting cluster in practice.
We applied k-means cluster to 872 elderly patients with asthma (aged ≥ 65 years) in a prospective, observational, and multicentered cohort. Acute asthma exacerbation data collected during the prospective follow-up of 2 years was used to evaluate clinical trajectories of these clusters. Subsequently, a decision-tree algorithm was developed to facilitate implementation of these classifications.
Four clusters of elderly patients with asthma were identified: (1) long symptom duration and marked airway obstruction, (2) female dominance and normal lung function, (3) smoking male dominance and reduced lung function, and (4) high body mass index and borderline lung function. Cluster grouping was strongly predictive of time to first acute asthma exacerbation (log-rank P = .01). The developed decision-tree algorithm included 2 variables (percentage of predicted forced expiratory volume in 1 second and smoking pack-years), and its efficiency in proper classification was confirmed in the secondary cohort of elderly patients with asthma.
We defined 4 elderly asthma phenotypic clusters with distinct probabilities of future acute exacerbation of asthma. Our simplified decision-tree algorithm can be easily administered in practice to better understand elderly asthma and to identify an exacerbation-prone subgroup of elderly patients with asthma.
尚未有人尝试对老年人群中的哮喘表型进行分类。明确识别临床表型对于实现老年哮喘患者的最佳治疗至关重要。
通过聚类分析对老年哮喘患者进行分类,并开发一种在实践中使用所得聚类的方法。
我们将k均值聚类应用于一项前瞻性、观察性、多中心队列研究中的872例老年哮喘患者(年龄≥65岁)。在2年的前瞻性随访期间收集的急性哮喘加重数据用于评估这些聚类的临床轨迹。随后,开发了一种决策树算法以促进这些分类的实施。
识别出四组老年哮喘患者:(1)症状持续时间长且气道阻塞明显;(2)以女性为主且肺功能正常;(3)以吸烟男性为主且肺功能降低;(4)体重指数高且肺功能临界。聚类分组对首次急性哮喘加重时间具有很强的预测性(对数秩检验P = 0.01)。所开发的决策树算法包括2个变量(预计1秒用力呼气量百分比和吸烟包年数),其在正确分类方面的效率在老年哮喘患者的次级队列中得到了证实。
我们定义了4种老年哮喘表型聚类,其未来哮喘急性加重的概率各不相同。我们简化的决策树算法在实践中易于应用,以更好地了解老年哮喘并识别老年哮喘患者中易于加重的亚组。